Block-parallel data analysis with DIY2

D. Morozov, T. Peterka
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引用次数: 35

Abstract

DIY2 is a programming model and runtime for block-parallel analytics on distributed-memory machines. Its main abstraction is block-structured data parallelism: data are decomposed into blocks; blocks are assigned to processing elements (processes or threads); computation is described as iterations over these blocks, and communication between blocks is defined by reusable patterns. By expressing computation in this general form, the DIY2 runtime is free to optimize the movement of blocks between slow and fast memories (disk and flash vs. DRAM) and to concurrently execute blocks residing in memory with multiple threads. This enables the same program to execute in-core, out-of-core, serial, parallel, single-threaded, multithreaded, or combinations thereof. This paper describes the implementation of the main features of the DIY2 programming model and optimizations to improve performance. DIY2 is evaluated on complete analysis codes.
基于DIY2的块并行数据分析
DIY2是用于分布式内存机器上的块并行分析的编程模型和运行时。它的主要抽象是块结构的数据并行:数据被分解成块;块被分配给处理元素(进程或线程);计算被描述为对这些块的迭代,块之间的通信由可重用模式定义。通过以这种通用形式表示计算,DIY2运行时可以自由地优化块在慢速和快速内存(磁盘和闪存与DRAM)之间的移动,并使用多个线程并发地执行驻留在内存中的块。这使得同一个程序可以执行核内、核外、串行、并行、单线程、多线程或它们的组合。本文介绍了DIY2编程模型实现的主要特点和提高性能的优化措施。DIY2在完整的分析代码上进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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